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Communication Dans Un Congrès Année : 2020

Developing Customized & Secure Blockchains with Deep Federation Learning to Prevent Successive Attacks

Résumé

Recently, blockchain technology has been one of the most promising fields of research aiming to enhance the security and privacy of systems. It follows a distributed mechanism to make the storage system fault-tolerant. However, even after adopting all the security measures, there are some risks for cyberattacks in the blockchain. From a statistical point of view, attacks can be compared to anomalous transactions compared to normal transactions. In this paper, these anomalous transactions can be detected using machine learning algorithms, thus making the framework much more secure. Several machine learning algorithms can detect anomalous observations. Due to the typical nature of the transactions dataset (time-series), we choose to apply a sequence to the sequence model. In this paper, we present our approach, where we use federated learning embedded with an LSTM-based autoencoder to detect anomalous transactions.
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Dates et versions

hal-02997482 , version 1 (10-11-2020)

Identifiants

  • HAL Id : hal-02997482 , version 1

Citer

Soumya Banerjee, Soham Chakraborty, Paul Mühlethaler. Developing Customized & Secure Blockchains with Deep Federation Learning to Prevent Successive Attacks. MSPN 2020 - 6th International Conference on Mobile, Secure and Programmable Networking, Oct 2020, Paris / Virtual, France. ⟨hal-02997482⟩

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